Danial Khatamsaz, Raymundo Arróyave, Douglas L. Allaire
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引用次数: 0
摘要
工程设计中的资源管理旨在优化分配,同时最大限度地提高最终设计的性能指标。贝叶斯优化(BO)是一种高效的设计框架,它通过启发式搜索明智地分配资源,旨在以最少的实验确定最佳的设计区域。在推荐一系列实验或任务时,该框架会预测这些实验或任务的完成情况,以扩充其知识库,从而引导其决策朝着最有利的下一步发展。然而,当遇到时间限制或其他资源挑战时,瓶颈就会阻碍传统 BO 吸收知识和高效分配资源的能力。在这项工作中,我们引入了一个异步学习框架,旨在利用实验之间的空闲时间。该模型善于分配资源,利用低保真实验来收集有关目标函数的全面见解。这种方法可确保系统不受先前实验结果的影响,因为它暂时依赖预期结果作为实际结果的替身。我们首先探讨了一个基本问题,即异步学习与传统同步多保真度 BO 的功效对比。然后,我们将这种方法用于一项实际挑战:优化双相钢的特定机械特性。
Resource management in engineering design seeks to optimally allocate while maximizing the performance metrics of the final design. Bayesian optimization (BO) is an efficient design framework that judiciously allocates resources through heuristic-based searches, aiming to identify the optimal design region with minimal experiments. Upon recommending a series of experiments or tasks, the framework anticipates their completion to augment its knowledge repository, subsequently guiding its decisions toward the most favorable next steps. However, when confronted with time constraints or other resource challenges, bottlenecks can hinder the traditional BO’s ability to assimilate knowledge and allocate resources with efficiency. In this work, we introduce an asynchronous learning framework designed to utilize idle periods between experiments. This model adeptly allocates resources, capitalizing on lower fidelity experiments to gather comprehensive insights about the target objective function. Such an approach ensures that the system progresses uninhibited by the outcomes of prior experiments, as it provisionally relies on anticipated results as stand-ins for actual outcomes. We initiate our exploration by addressing a basic problem, contrasting the efficacy of asynchronous learning against traditional synchronous multi-fidelity BO. We then employ this method to a practical challenge: optimizing a specific mechanical characteristic of a dual-phase steel.